#     from LossFunctions import weight_loss_DC_3 as Loss1, weight_loss_MSE_3 as Loss2

from GenerateModels import ChimeraNet as GenerateModel
tag = 'Feature{}Nsrc{}{}'.format(['Proposed', 'SpecSpat',
                                  'SpecOnly'][args.featureFlag], args.srcNum,
                                 ['', 'Wei'][args.outputFlag])

print(tag)
if args.save_dir is None:
    save_dir = './Models/{}'.format(tag)
else:
    save_dir = args.save_dir
modelDirectory = '{}/{}'.format(save_dir, tag)

# Load the model
train_model = GenerateModel(Nsrc=args.srcNum, inputFeature=args.featureFlag)
print(train_model.summary())
# plot_model(train_model, to_file='Model.png')

initial_epoch = 0
if args.continueToTrainFlag:
    savedModelDirectory = '{}/{}'.format('/Directory2TrainedModels', tag)
    try:
        savedModels = [
            filename for path, subdirs, files in os.walk(savedModelDirectory)
            for filename in files if filename.endswith(".h5")
        ]

        if len(savedModels) > 0:
            index = []
            for saveModelName in savedModels:
Beispiel #2
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        from GenerateModels import GenerateBSSCapsNet as GenerateModel

        tag = 'CapsNetModel'
        saveflag = 'Caps'

    elif modelMode == 4:

        tag = 'OracleIBM'
        saveflag = 'Oracle'

    print(tag)

    if modelMode < 4:
        #########################################
        modelDirectory = './result04April/' + tag
        model = GenerateModel()

        # The separation model
        model.load_weights(modelDirectory + '/' + 'trained_model.h5')
        print(model.summary())
        # plot_model(train_model, to_file='Model.png')

    import os
    for genderFlag in ['MM', 'MF', 'FF']:
        fullSaveDir = saveDirectoryTop + MatchedStr + '{}'.format(genderFlag)
        dataDir = folderName + MatchedStr + '{}/'.format(genderFlag)

        for azimuth in Azimuth_array:
            fullSaveDir_azi = fullSaveDir + '/{}/'.format(azimuth)
            if not os.path.exists(fullSaveDir_azi):
                os.makedirs(fullSaveDir_azi)
Beispiel #3
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    })

from GenerateModels import ChimeraNet as GenerateModel
tag = 'Feature{}Nsrc{}{}'.format(['Proposed', 'SpecSpat',
                                  'SpecOnly'][args.featureFlag], args.srcNum,
                                 ['', 'Wei'][args.outputFlag])
print(tag)
modelDirectory = './TrainedModels'

# from GenerateModelsOld import ChimeraNet as GenerateModel
# tag = 'ChimeraNsrc{}{}'.format(args.srcNum,['','Wei'][args.outputFlag])
# print(tag)
# modelDirectory = '/Directory2TrainedModels/ChimeraModels'

# Load the model
EncoderModel = GenerateModel(Nsrc=args.srcNum, inputFeature=args.featureFlag)
# The separation model
from keras.models import load_model
EncoderModel = load_model("{}/{}/modelsave.h5".format(modelDirectory, tag))
# EncoderModel = load_model("{}/{}/modelsave.h5".format(modelDirectory,tag), custom_objects={'loss_DC': LossA(Nsrc=args.srcNum), 'lossMSE': LossB(Nsrc=args.srcNum)})

print(EncoderModel.summary())
# plot_model(train_model, to_file='Model.png')

import itertools

# tag = 'IBM' # comment this out later, this is for IBM baseline
# tag = 'GMM' # comment this out later, this is for GMM baseline

mseResults = np.zeros((N, ), dtype='float32')
mseResults2 = np.zeros((N, ), dtype='float32')
Beispiel #4
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elif args.outputFlag==1:
    from GenerateModels import EncoderNetBigLinear as GenerateModel



tag = 'EncoderModel_{}_FF{}_CustomLoss'.format(['mel','linear'][args.outputFlag],args.featureFlag)

print(tag)
if args.save_dir is None:
    save_dir = './EncoderResult/Models/{}'.format(tag)
else:
    save_dir = args.save_dir


# Load the model
train_model = GenerateModel()
print(train_model.summary())
# plot_model(train_model, to_file='Model.png')



initial_epoch = 0
if args.continueToTrainFlag:
    try:
        savedModels = [filename for path, subdirs, files in os.walk(save_dir)
                          for filename in files if filename.endswith(".h5")]

        if len(savedModels)>0:
            index = []
            for saveModelName in savedModels:
                temp = re.findall(r'(?<=model-)(\d+).h5', saveModelName)
Beispiel #5
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from keras.utils.generic_utils import get_custom_objects
from LossFuncs import my_loss as customLoss

get_custom_objects().update({"my_loss": customLoss})

if args.outputFlag == 0:
    from GenerateModels import EncoderNetBigMel as GenerateModel
elif args.outputFlag == 1:
    from GenerateModels import EncoderNetBigLinear as GenerateModel

tag = 'EncoderModel_{}_FF{}_CustomLoss'.format(['mel',
                                                'linear'][args.outputFlag],
                                               args.featureFlag)

# Load the model
EncoderModel = GenerateModel()
# print(model.summary())
# plot_model(model, to_file='FrequencyModel.png')

modelDirectory = './EncoderResultNov/Models/{}'.format(tag)
# The separation model
from keras.models import load_model

EncoderModel = load_model("{}/ConvergeModel.h5".format(modelDirectory))

print(EncoderModel.summary())
# plot_model(train_model, to_file='Model.png')

if args.synthesisFlag & args.outputFlag == 1:
    import os
    import librosa